首页> 外文期刊>Journal of clinical laboratory analysis. >Evaluation of the detection ability of uropathogen morphology and vaginal contamination by the Atellica UAS800 automated urine microscopy analyzer and its effectiveness
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Evaluation of the detection ability of uropathogen morphology and vaginal contamination by the Atellica UAS800 automated urine microscopy analyzer and its effectiveness

机译:Atellica UAS800自动化尿显微镜分析仪及其有效性评价尿羟病态形态和阴道污染的检测能力

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Background To help combat the worldwide spread of multidrug‐resistant Enterobacterales, which are responsible for many causes of urinary tract infection (UTI), we evaluated the ability of the Atellica UAS800 automated microscopy system, the only one offering the capability of bacterial morphological differentiation, to determine its effectiveness. Methods We examined 118 outpatient spot urine samples in which pyuria and bacteriuria were observed using flow cytometry (training set: 81; cross‐validation set: 37). The ability of the Atellica UAS800 to differentiate between bacilli and cocci was verified. To improve its ability, multiple logistic regression analysis was used to construct a prediction formula. Results This instrument's detection sensitivity was 106?CFU/ml, and reproducibility in that range was good, but data reliability for the number of cocci was low. Multiple logistic regression analysis with each explanatory variable (14 items from the Atellica UAS800, age and sex) showed the best prediction formula for discrimination of uropathogen morphology was a model with 5 explanatory variables: number of bacilli ( p ?0.001), squamous epithelial cells ( p =?0.004), age ( p =?0.039), number of cocci ( p =?0.107), and erythrocytes ( p =?0.111). For a predicted cutoff value of 0.449, sensitivity was 0.879 and specificity was 0.854. In the cross‐validation set, sensitivity was 0.813 and specificity was 0.857. Conclusions The Atellica UAS800 could detect squamous epithelial cells, an indicator of vaginal contamination, with high sensitivity, which further improved performance. Simultaneous use of this probability prediction formula with urinalysis results may facilitate real‐time prediction of uropathogens and vaginal contamination, thus providing helpful information for empiric therapy.
机译:背景技术为了帮助打击全球抗肠杆菌的全球传播,这对许多原因的尿路感染(UTI)负责,我们评估了Atellica UAS800自动显微镜系统的能力,唯一提供了细菌形态分化能力的能力,确定其有效性。方法检查118个门诊点尿液样本,其中使用流式细胞术观察脓电尿和细菌(训练集:81;交叉验证集:37)。 Atellica UAS800在Bacilli和Cocci之间鉴别的能力进行了验证。为了提高其能力,使用多元逻辑回归分析来构建预测公式。结果该仪器的检测灵敏度为106?CFU / ml,并且在该范围内的再现性很好,但COCCI数量的数据可靠性很低。与每个解释性变量的多元逻辑回归分析(来自Atellica UAS800的14个项目,年龄和性别)显示出用于鉴别尿羟原酸脱硫形态的最佳预测公式是一种具有5个解释性变量的模型:Bacilli的数量(P <0.001),鳞状上皮细胞(P = 0.004),年龄(p = 0.039),COCC1的数量(P =β07),和红细胞(P = 0.111)。对于预测的截止值为0.449,敏感性为0.879,特异性为0.854。在交叉验证集中,灵敏度为0.813,特异性为0.857。结论Atellica UAS800可以检测鳞状上皮细胞,阴道污染指标,具有高灵敏度,进一步提高了性能。同时使用这种概率预测公式与尿液分析结果可以促进对尿膜异常和阴道污染的实时预测,从而提供有用的验证治疗信息。

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